Tips for Building a Data Science Capability. Some Hard-Won Best Practices and (Surprising) Lessons Learned

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Tips for Building a Data Science Capability Some Hard-Won Best Practices and (Surprising) Lessons Learned

2 Introduction

CONTENTS INTRODUCTION... V Analytics Culture WHY HASN T YOUR DATA SCIENCE INVESTMENT DELIVERED ON ITS PROMISE?... 6 Organizational Profiles GETTING PAST THE BUMPS IN THE ROAD... 13 Analytics and Change KEYS TO BUILDING BUY-IN... 17 Aligning Data Science MAKING ORGANIZATIONAL STRUCTURE WORK... 22 The Leadership Angle HARNESSING THE POWER OF DATA THROUGH THE STAND-UP OF A CHIEF DATA OFFICER... 27 Everything you Need to Know About Managing Your Data Science Talent THE BOOZ ALLEN DATA SCIENCE TALENT MANAGEMENT MODEL... 31 The Data Science Challenge HOW DESIGN THINKING CAN HELP YOU REALIZE ORGANIZATIONAL VALUE... 36 CONCLUSION... 42 Contents iii

iv Introduction

INTRODUCTION Many organizations believe in the power and potential of data science but are challenged in establishing a sustainable data science capability. How do organizations embed data science across their enterprise so that it can deliver the next level of organizational performance and return on investment? Building a data science capability in any organization isn t easy there s a lot to learn, with roadblocks and pitfalls at every turn. But it can be done and done right. This booklet will show you how. We ve filled it with the most valuable best practices and lessons we ve learned both in our pioneering work with clients, and in building our own, 500-member data science team, one of the world s largest. In these pages, you ll discover: + + Why your data science investment may not have delivered on its promise so far. It could be that you haven t developed an analyticsdriven culture. + + How to keep from getting bogged down. Some organizations have difficulty prioritizing their data science projects. Others face skepticism from leadership. Here s how to overcome the most common roadblocks. + + How to get buy-in for data science throughout the entire organization. We show you how to overcome resistance to everything from using analytics to sharing information. + + Where to place your data science teams in your organization. Should they be centralized? Dispersed? Permanently embedded in individual business units? Each option has its advantages and risks. + + How to stand up the position of Chief Data Officer (CDO). We tell you why a CDO needs to be one part enforcer and two parts data evangelist. + + How you can leverage our Data Science Talent Management Model. We ll help you answer three key questions: Who do you need? Where do you need them? How do you keep them? + + Why design thinking-when applied to data science-can unlock organizational value. How the designer s mindset can ground and amplify analytic insights. Introduction v

ANALYTICS CULTURE Why Hasn t Your Data Science Investment Delivered on its Promise? The promise of game-changing results from data science has been touted for years, and the allure of that promise has driven organizations across all commercial markets and the public sectors to invest huge sums of money, time, and resources to make it happen. Encouraged by the outcomes of analytical pilots, organizations are now looking to scale data science across their enterprise. As they continue their pursuit, they have found the benefits are elusive and they are often humbled by organizational inertia. The hard truth is that a key enabler to delivering on the biggest promise of data science is transforming organizational culture. And, contrary to popular belief, it s not about transforming to just any culture. Organizations must start to pursue an analytics-driven culture. An analytics-driven culture uses analytics to generate insights that can be used by organizations to inform strategic decisions and propel the organization to the next level of performance. One of the key benefits of an analytics-driven culture is the difference in timescales in findings solutions. With an analytics-driven culture, the organization becomes particularly adept at asking the right questions and rapidly (within minutes sometimes) getting answers. That shifts the time available to thoughtful discussion on what analytical outputs mean and how they inform decisions to derive desired outcomes.

BOOZ ALLEN S DATA SCIENCE DELIVERY MODEL Booz Allen s Data Science Delivery Model describes the ongoing activities that collectively evolve an organization to an analytics-driven culture. We work with organizations to approach analytics in a holistic matter through three phases: + Imagine Outcomes focuses on deconstructing business problems to define objectives that will be met through analytics. We work with our clients to create analytics strategies, prioritize initiatives, and establish a collaborative environment around analytics. + Generate Insights is where our experts apply data science and advanced analytics methods, tools, and techniques to support our clients in unveiling analytic insights. + Realize Value turns the analytic insights into actionable results that enhance an organization s effectiveness, efficiency, and/or bottom line. We support our clients in putting analytics into production, developing feed-back ecosystems, establishing an environment of continuous learning, and building and managing their talent. DATA SCIENCE DELIVERY MODEL IMAGINE OUTCOMES What do I want to achieve and how will I get there? Identify business problems and desired outcomes Create analytic strategy and approach IMAGINE O U T C O M E S ACCELERATORS Opportunity Prioritization, Idea Generation, Relationship Building DOMAIN KNOWLEDGE including industry expertise, familiarity with data sets, and operational understanding, underpins an organization s ability to maximize the value from its data GENERATE INSIGHTS ANALYTICS- DRIVEN CULTURE ACCELERATORS ollaborative nalytics, ata aluation, echnology Infusion GENERATE INSIGHTS How do I unleash the value from my data? Apply data science to generate insights Develop, test and evaluate hypotheses REALIZE VALUE REALIZE VALUE For my operations, organization, bottom line, and culture Implement analytics in the enterprise Identify and apply insights to generate value ACCELERATORS ctivated nalytics, daptive nterprise, ituational ensing Analytics Culture 7

HOW TO INCUBATE AND SUSTAIN AN ANALYTICS-DRIVEN CULTURE It is no surprise building a culture is hard and there is just as much art to it as there is science. It is about deliberately creating the conditions for advanced analytics to flourish and then stepping back to empower collective ownership of an organic transformation. At Booz Allen Hamilton, we not only have experience in helping our clients navigate this challenge, but we also have experience from our own transformation. Led in part by our 500+ data science team, we began our own journey to an analytics-driven culture, and, through our experiences, we identified foundational building blocks that are universal to anyone who wants to deliver on the promise of analytics. While in the end each organization will have its own unique flavor of its final analytics-driven state, it is important to start any journey by pursuing these foundational elements. We ve outlined the basics for how to incubate and sustain an analytics-driven culture. RECALIBRATE YOUR TOLERANCE FOR FAILURE FAILURE IS THE PRICE OF DISCOVERY: To realize the full power of what data science can provide, it is important to foster curiosity and experimentation, and embrace failure for the unexpected insights and learning that it can provide. At Booz Allen, we created these conditions in a few ways. First, we empowered our data science team to investigate and discover; to design and run their own experiments that blend inductive pattern recognition with deductive hypothesis generation; and to explore rabbit holes of interest. Recognizing, like many others, that data scientists are rarely motivated by money and prefer the time and space to geek out, we established a series of reward and recognition mechanisms focused on investing in passion projects. Discovery has an added organizational benefit. HOW TO INCUBATE AND SUSTAIN AN ANALYTICS-DRIVEN CULTURE FLATTEN YOUR HIERARCHY It Can Be the Enemy of Collaboration RECALIBRATE YOUR TOLERANCE FOR FAILURE Failure is the Price of Discovery ANALYTICS- DRIVEN CULTURE Data Science is About More Than Data Scientists BE INCLUSIVE DEMOCRATIZE ANALYTICS Everyone Needs to Feel Conversant PROVIDE A WAY INTO THE CLUB Storytellers Learn by Doing MEASURE AND REWARD THE MEANS AS WELL AS THE END It Reinforces Behavior that will Deliver Results 8 WHY HASNT YOUR DATA SCIENCE INVESTMENT DELIVERED ON ITS PROMISE?

We found that discovery is self-fulfilling and that once you start on the road to discovery, you gain momentum and energy that permeates throughout the organization, which provides powerful lift to your data science team. Finally, it is important to note that it is essential to fail fast in the discovery process. It does no good to toil on something for 6 months and then learn that it doesn t work. Experiment and fail quickly to discover more. BE INCLUSIVE DATA SCIENCE IS ABOUT MORE THAN DATA SCIENTISTS: What we learned in our journey is that true curiosity and experimentation requires an enormous tent of skills, abilities, and perspectives to achieve meaningful outcomes for data science. It is important to take an inclusive approach to advanced analytics that extends beyond the traditional cadre of world-class data scientists. For example, our data science teams often include data scientists, technologists, domain experts, organizational design and strategy practitioners, design thinkers, and human capital specialists. Diversity of thought can help organizations unlock the particularly thorny problems and extract value from their data. FLATTEN YOUR HIERARCHY IT CAN BE THE ENEMY OF COLLABORATION: Data scientists need the autonomy and the flexibility to explore analytical challenges without the added burden of unnecessary hierarchical structures. In practice, this means providing data science teams with access to resources, tools, and talent; the freedom to scope and run their own experiments; and the time and space to collaborate with a diverse team and the broader data science community. At Booz Allen, we have invested in tools, resources, and platforms to empower data scientists to share their work and build on each other s successes. This includes a sandbox to store algorithms and code so that good work can be replicated without permission. We also developed a tool that relies on collective community participation to source and share data sets that can be used for analysis. PROVIDE A WAY INTO THE CLUB STORYTELLERS LEARN BY DOING: Data science and advanced analytics can be intimidating for some and exciting for others. What s important is to provide a variety of learning opportunities that can cater to the different skill sets and attitudes that exist within the organization. We tackled this challenge in a variety of ways: (1) We sponsored analytical challenges and hackathons both to test and satisfy the desire of advanced practitioners while at the same time providing a safe learning environment for those still developing their skills; (2) We created a self-paced online training course for data education, Explore Data Science, to teach both foundational and advanced data science concepts such as data visualization; (3) Additionally, we created a data science training program called TechTank to cultivate skills through apprenticeship and structured training. These are just a few examples. The bottom line is that we learned it is important to design opportunities and learning programs at all levels to help people get familiar with data science concepts and become more comfortable in practicing them. Don t cast data scientists as mythical rock stars and then A KEY PITFALL TO AVOID When building an analytics-driven culture, it is important to avoid creating high barriers to entry. Often organizations will showcase top data science talent as an example of the capability. While it is intended to provide context and vision, it can also be interpreted as an unrealistic comparison for some. Rather than illuminate a single data science rock star, it is important to highlight a diversity of talent at all levels to help others self-identify with the capability. It is also a more realistic version of the truth. Very rarely will you find magical unicorns that embody the full breadth of math and computer science skills along with the requisite domain knowledge. More often, you will build diverse teams that when combined provide you with the triple-threat (computer science, math/statistics, and domain expertise) model needed for the toughest data science problems. Analytics Culture 9

One of the difficult aspects of cultivating an analyticsdriven culture is that there is a lot of noise on the topic. not offer a way into the club. Remember, all data scientists have a role in providing mentorship and learning opportunities. Data scientists need to attend hackathons, teach classes, and mentor junior staff whenever possible. DEMOCRATIZE ANALYTICS EVERYONE NEEDS TO FEEL CONVERSANT: For something to be part of organizational culture, it must be part of the fabric of the employee behavior. That means to incubate and sustain an analytics-driven culture, employees must interact with and use analytics in their daily routines. In order for this to happen, analytics must be available and accessible to all employees in some form or fashion. For example, at Booz Allen, we developed a tool that allows users to drag and drop packages of coding to help solve analytical inquiries. The drag-and-drop feature lowers the barrier to entry and empowers everyday employees in performing data analysis. Additionally, all employees need a baseline of analytical knowledge, starting with a common lexicon, to facilitate productive collaboration and instill confidence. While not everyone will be data scientists, employees need to identify with analytics and be equipped with the knowledge, skills, and abilities to work with analytics to drive smarter decisions and deliver exponential organizational performance. One key way we democratized analytics at Booz Allen was through the development of the Field Guide to Data Science, which provides a baseline understanding about data science and a common lexicon so that employees can communicate with each other and engage in solving analytical problems. MEASURE AND REWARD THE MEANS AS WELL AS THE END IT REINFORCES BEHAVIOR THAT WILL DELIVER RESULTS: When building an analytics-driven culture, it is important to reward the approach and thought process that people take as well as the results achieved. It is similar to when partial credit was awarded in school some credit was given if you took the right approach even if you ended up at the wrong answer. The same applies here. In order to help shift mindsets and change behavior, people need to believe in the analytical process and thus be recognized for trying it until it is customary. At Booz Allen, we believe analytics innovation starts at the staff level and have implemented systems and processes to reinforce that message. For example, when we evaluate project success, we look at more than just the expected results but also the approach and learning outcome. In one case, we were able to apply data science to devise an approach that significantly reduced the time it took to identify fraud. While the results were impressive, the innovative approach to the problem became the star. In the end, we have found that whether or not the results pan out, it s a win for us either we ve discovered a great new finding or we have inspired our teams to continue looking. DEBUNKING COMMON MYTHS THAT MAY PREVENT YOU FROM EVOLVING TO AN ANALYTICS-DRIVEN CULTURE One of the difficult aspects of cultivating an analytics-driven culture is that there is a lot of noise on the topic. In the above section, we have isolated six common cultural denominators that must exist for an analytics-driven culture to thrive. In 10 WHY HASNT YOUR DATA SCIENCE INVESTMENT DELIVERED ON ITS PROMISE?

reviewing various articles, press, and literature on the subject, and comparing to our own experiences, we also identified four common myths or misnomers to help organizations avoid potential hazards. The journey can be hard enough and it s important to focus resources on what counts. MYTH #1: GOVERNANCE STRUCTURES ARE THE SOLUTION: Governance helps organizational bodies that represent multiple stakeholder groups and meet regularly certainly help facilitate collaboration and information sharing. As any good data scientist will tell you, however, correlation does not imply causation. That is, simply because we find that most successful analytics organizations have governance structures in place, it is not the structure alone that leads to the group s success. Participants in an analytics function (e.g., data scientists, business owners, operational experts) must work to establish relationships and trust. This is what creates an environment that is conducive to data transparency and development of shared challenges, goals, and priorities. Then, governance structures serve as an incredibly valuable mechanism for ensuring such topics are discussed with some regularity and formality. MYTH #2: ANALYTIC SOLUTIONS AND OPERATIONAL REALITIES ARE MUTUALLY EXCLUSIVE: A common characterization we hear from clients is, operational owners are stuck in their ways with no vision, while data scientists don t understand the complexity required to turn analytical answers into reality. As with most entirely divergent perspectives, the truth is found somewhere in the middle. Often, we observe data scientists pushing operational owners outside of their comfort zones when it comes to exploring the realm of what s possible. The responding hesitance is often the result of past, failed experiences, or knowledge that implementation will require overcoming a series of operational hurdles that can often take time. It is important that the analytics community continues to push the envelope, but also respect that change is a process, and the benefit of time and careful planning can prevent serious missteps and unintended consequences. Prototyping is typically an effective way to merge analytic solutions and operational realities. Prototyping analytic solutions can generate organizational buy-in while helping to anticipate expected implementation challenges to inform better planning. MYTH #3: DATA SCIENTISTS PROVIDE A SERVICE TO THE BUSINESS: In an analytics-driven culture, there is no customer or provider only partners. The term customer implies that one party is a recipient of someone else s service, which here, are analytic outcomes. If this is the case, it is evidence that collaboration is failing. Throughout all analytics endeavors, data scientists and decision makers (or decision influencers) should work with shared goals, equally invested in both the process and the outcomes. This means partnering every step of the way in developing hypotheses, determining appropriate/ acceptable data inputs, validating analytic assumptions, and interpreting results. In this way, we eliminate the us versus them mentality and recognize that analytics is just part of doing business, rather than an add-on or an input. An added benefit is better business outcomes. As stated earlier, inclusive teams are a primary condition for any organization wanting to increase organizational performance through analytics. MYTH #4: COMPLEX ANALYTICS AND TOOLS ARE BETTER THAN SIMPLE ANALYTICS AND TOOLS: We are excited about the technical power introduced by tools like Hadoop and Spark, while techniques like machine learning carry a certain sort of mystique and excitement. Yes, modern tools and techniques provide a world of opportunity that was once nonexistent, but let s not forget there is also beauty in simplicity. The high-end, expensive tools are powerful, but most organizations are only prepared Analytics Culture 11

to use a fraction of their power. By over-purchasing on analytical tools, an organization can unnecessarily increase its analytical investment and make it harder to prove a return on that investment. Furthermore, the learning curve associated with the high-end tools may make it harder for organizations to realize the most value from their data. In the end, information consumers must understand the analytical insights from these tools with at least enough certainty that they are confident in its output. Embrace simplicity where simplicity will do, and save complexity for the hairy problems. If the information consumers understand the analytical results 95 percent of the time, perhaps they will just trust us the other 5 percent. WHEN DONE RIGHT, THE PAYOFF IS WORTH IT Like most things in life, if it is hard, it is worth it. Building an analytics-driven culture doesn t happen overnight and it is not something that you can force. As many can attest, organizational inertia is powerful. However, by following these foundational steps and taking care to avoid common myths and pitfalls, organizations can begin a journey to set the cultural conditions needed to deliver on the promise of analytics. It is up to organizational leaders and employees alike to build upon these elements and design and grow their own version or interpretation of an analytics-driven culture. Only then can the promise of game-changing performance be truly realized. 12 WHY HASNT YOUR DATA SCIENCE INVESTMENT DELIVERED ON ITS PROMISE?

ORGANIZATIONAL PROFILES Getting Past the Bumps in the Road With the explosion of data in virtually every aspect of society, a growing number of organizations are seeking to take full advantage of analytics to drive decision making. They are developing more sophisticated descriptive and diagnostic analytics to understand what has happened in the past, and why. They are poised to take analytics to an even higher level by using the new wealth of data to predict what will happen in the future, and to prescribe the best course of action. No organization, however, instantly becomes adept at this next generation of analytics. It is a journey, and like any journey, there may be times when the way ahead is not clear, and it becomes difficult to move forward. Some organizations may be unsure of the best path to take. Others may hesitate because they are not convinced that continued investment in analytics will pay off. Still others may find themselves mired in data that is difficult to use. Even organizations that are further along in the journey can find their progress slowed. It may be that they have achieved success in pilot and proof-ofconcept efforts, but have not figured out how to translate that to a wider capability. Or, perhaps they have all the elements in place people, processes, and technology but the larger organizational culture still has not embraced the potential of analytics to feed innovation. These kinds of obstacles are natural and should be expected. But they do not have to slow down an organization for long. There are a number of ways that organizations can restart their progress. Booz Allen Hamilton s work with organizations across the commercial and government sectors found that organizations on the analytics journey generally fit one of five profiles, each with its own set of challenges. We have identified techniques that can help all organizations move forward. THE WILLING ORGANIZATION CHARTING A CLEAR PATH This organization recognizes the potential of analytics to create opportunities and solve complex problems, but does not know exactly how to proceed. Typically, the willing organization is early in the journey, and may be using basic descriptive and diagnostic analytics to investigate specific problems. Now, however, it wants to broaden that capability with analytics that can guide decision making, and more fully support mission and business goals. But what is the best approach? Without a clear direction, any organization no matter how willing and able may find itself in a holding pattern. Willing organizations often let their enthusiasm cloud the need to fully map out all of the many elements of an analytics capability. An analytics blueprint can

help organizations understand how those elements fit together, and what steps need to be taken in what order. For example, the blueprint can guide one of the most effective steps: determining in advance where the value in the data might lie. What is the art of the possible? Instead of starting with a specific problem or goal, start with the data itself. Look for trends and issues that suggest how analytics can make a significant difference in your organization. This insight gives the organization a picture of what its full analytics capability might look like, and sets the context for creating the path to get there. THE HESITANT ADOPTER USING PROTOTYPES TO OVERCOME DOUBT This organization may be exploring more sophisticated analytics, but is less sure of how to define its value and so finds it difficult to move forward. While the analytics visionaries want to increase investments in an analytics capability, they have not yet gained the organizational support for doing so. The organization s leadership, for example, may not be convinced that analytics will really help the bottom line. Or, individuals in the organization may not yet recognize the value of analytics, and still prefer to make decisions based on their own knowledge and experience despite mounting evidence to the contrary. These types of concerns can be overwhelming, stopping an organization in its tracks. One effective solution is to think big, but start small. Organizations sometimes believe that they must jump into the next generation of analytics all at once. But if they experiment with a limited number of prototypes, they have a chance to see what analytics can do. This approach does not require a major investment in technology or people, and positive results from prototypes will help build the business case for new types of analytics and demonstrate its potential value. THE DATA-DISTRESSED ORGANIZATION BRINGING THE STAKEHOLDERS TOGETHER This organization is ready to develop more, increasingly sophisticated analytics, but finds it difficult to get its data all in one place in a form that is usable. Perhaps the data is of poor quality, filled with errors or incomplete. Or, there may be a reluctance to share data across the organization. The data may not be collected in a consistent way, or it might be THE WILLING ORGANIZATION THE HESITANT ADOPTER THE DATA DISTRESSED ORGANIZATION Characteristics + + Beginning of the journey + + Believes in the power of analytics, but overwhelmed with how to get started Characteristics + + Beginning/middle of the journey + + Analytics visionaries want to invest more heavily in analytics, but lack organizational support Characteristics + + Beginning/middle of the journey + + Organization wants to develop increasingly sophisticated analytics, but is stymied by an inability to get the underlying data in order What To Do Chart a Clear Path: Explore data to help inform the organization s vision for analytics, and to chart a step-by-step path to achieve that vision What To Do Use Prototypes to Overcome Doubt: Think big but start small, using prototypes to prove the value of analytics to end users and help overcome doubt What To Do Bring the Stakeholders Together: Collaborate and build relationships between IT and analysts to develop data that can be used by both 14 GETTING PAST THE BUMPS IN THE ROAD

locked in rigid data silos that are difficult to connect. The list goes on. Organizations can help get their data in order by making sure that analysts are included in the data management framework and design. Although an organization s data usually belongs to IT, the analysts are the users and data problems can arise when their point of view is not taken fully into account. A second method is to encourage collaboration and relationship building through technical, organizational and physical structures, such as new governance policies, or activities in which teams from across the organization work together to achieve a common goal. Such structures help break down the barriers to information sharing, which is the largest obstacle to analytics at many organizations. THE SCALING ORGANIZATION ESTABLISHING A CENTER OF EXCELLENCE This organization has achieved success using sophisticated analytics to drive decisions in a number of isolated efforts, but may have difficultly effectively growing an organization-wide capability. For instance, the organization may not yet have figured out how to achieve economies of scale. Or, it may have difficulty prioritizing if several stakeholders are competing for limited resources, for example, how does the organization choose which analytics efforts will best advance the interests of the mission or business? These and other challenges often arise because organizations typically expand by simply doing more of what they are already doing, rather than leveraging their knowledge through collaboration, and the sharing of best practices and lessons learned. Establishing an analytics Center of Excellence is one of the most effective methods of achieving this task. This Center of Excellence consists of a team that sets standards and promotes collaboration throughout the organization on a wide range of topics, such as training. The team also collects and disseminates best practices, such as analytical approaches, tools and techniques. It also shares lessons learned typically, knowledge that is applicable from one effort to the next. With a Center of Excellence, an organization can steadily grow its analytics capability in an organic, efficient manner. THE SCALING ORGANIZATION Characteristics + + Middle/far along in the journey + + Analytics have led to value in pockets of the organization, but leaders are uncertain about how to most effectively grow capabilities THE EARLY ADOPTER Characteristics + + Far along in the journey + + Analytics generate insights, but not everyone has adopted analytics to drive decisions, nor do they look to analytics to answer new questions What To Do Establish a Center of Excellence: Stand up a team dedicated to fostering collaboration, sharing best practices, and setting standards for analytics What To Do Initiate a Culture Change: Begin by making the analytic models easier for the end user to ingest and use Organizational Profiles 15

THE EARLY ADOPTER INITIATING A CULTURE CHANGE This organization is well established in delivering predictive and prescriptive analytics, but it is still trying to reach its ultimate goal: creating a culture of analytics-driven decision making. The organization wants to use data and analytics to encourage curiosity among all its employees, not just in its analysts. It hopes to inspire its entire workforce to imagine how analytics might create exciting new opportunities for the enterprise, and solve its most difficult business and mission problems. A particularly effective method of achieving this goal is to put data and analytics in the hands of end users from across the enterprise so they can see the possibilities for themselves. Some advanced technologies have visualization tools that enable this kind of direct interaction and give end users the flexibility to freely explore the data, following their ideas and hunches wherever they may lead. Such direct interactions will encourage end users to think about how analytics might solve any number of problems. This approach also increases the transparency of the analytics, so that people understand and trust them more. It gives end users throughout the organization a greater sense of ownership of the analytics and inspires them to use data and analytics to help drive their decisions. MOVING FORWARD ON THE JOURNEY Data, like any resource, exists only as potential unless it can be tapped. Organizations that can best capture the value in their data and use it in decision making will be the ones that thrive. Analytics is a rapidly expanding and dynamic field, and there is no single tried-and-true path to success. Every organization will encounter bumps in the road as it finds its own way. But no matter where an organization is on the analytics journey, it should think through where it is trying to go and why. What does the next step look like? What does the end state look like? By focusing on these kinds of questions, organizations can break free of their current constraints and continue on their path from whatever point they may be along their journey. 16 GETTING PAST THE BUMPS IN THE ROAD

ANALYTICS & CHANGE Keys to Building Buy-In Many organizations are poised to take full advantage of analytics to drive mission and business success using analytics not just to understand past events, but to predict future trends and to prescribe optimal courses of action. This ambitious goal requires more than the right technology, people, and processes. Just as important is strong organizational buy-in from everyone involved in the analytics capability, including both the owners of the data and the analytics end users. This often requires overcoming resistance on a number of fronts, from a reluctance to share information to a hesitancy to use the analytics in driving business decisions. Booz Allen Hamilton, a leading strategy and technology consulting firm, helps clients create critical buy-in through a change management approach tailored to organizations that are standing up a capability to develop increasingly sophisticated analytics. Our experience with government and commercial enterprises has shown that three aspects of change management are particularly critical. Vision is needed to help stakeholders understand leadership s long-term goals for using analytics to drive decisions and actions. There must be stakeholder participation in the process to develop shared understanding of how analytics can create value. And prototypes are needed to demonstrate that the analytics vision can indeed become a reality. Together, these three elements build buy-in for the analytics capability and bring your organization together to work toward a common goal. CREATING A VISION To be successful, leaders must be able to clearly articulate why an analytics capability is important to the organization and what the organization will look like when the capability is in place. Some members of an organization may not be convinced that analytics will add value to the business, so it is up to leadership to make the case that it will be worth the effort. Even if you already started down the path of adopting predictive and other sophisticated analytics, it is not too late to define a vision, one that is: + + Aspirational + + Based on an understanding of your organization s values + + Reasonable to achieve + + Mutually beneficial for everyone involved

ANALYTICS CAPABILITY ADOPTION CURVE DEGREE OF SUPPORT I am aware of the analytics capability stand up AWARENESS I understand how the change contributes to the analytics vision and how it impacts me UNDERSTANDING I am open-minded to the change and tell others how it contributes to the analytics vision ACCEPTANCE I am accountable for participating in the analytics capability ADOPTION OWNERSHIP I confidently share the successes related to the analytics capability stand up. I am committed to sustaining the change and can clearly explain how it relates to the analytics vision A good place to begin when defining the vision is a stakeholder analysis. Whether you are planning to stand up an enterprise-wide analytics capability or provide analytics for a single business unit or division, you should understand the cross-organizational concerns such as improved access to data and data security. A key to realizing the vision is communicating it to stakeholders. This is most often achieved through a strong leader at the top of an organization. But the vision can also be realized from the ground up. For example, Booz Allen s visioning process helped an intelligence agency overwhelmed by the volume of data to be analyzed create a vision for their analytics capability. That vision was communicated primarily through well-respected domain experts at the agency who led a grass-roots effort to build an analytics capability and successfully influenced leadership, staff, and peers. Whether the vision is top-down or bottom-up, it is essential to identify leaders and sponsors who can reinforce the ideas and keep the effort moving. Booz Allen gives you, as leaders and sponsors, the messaging and other change management tools to define your vision for analytics and present it to the organization. Booz Allen s collaborative visioning process helps define a future state that reflects the unique realities of your organization and cultivates a willingness to participate. A key role of the vision is to help overcome the roadblocks to buy-in. Among the ways to accomplish this is by demonstrating leadership s commitment and sponsorship, and by helping analytics teams and end users establish shared values and goals for the analytics. As these efforts take shape through the vision, they must be reinforced through participation in the analytics capability and through prototypes. PARTICIPATING IN THE ANALYTICS CAPABILITY The next step to overcoming resistance and building buy-in is to encourage stakeholder participation in the analytics capability. One way to accomplish this is to have stakeholders from across multiple business units contribute to decisions on analytics tool development. Through this engagement, stakeholders become actively involved in making the vision a reality. Participation calls for true collaboration leaders do not simply push their ideas down, but bring all the stakeholders into the effort. Through regular feedback and other methods, stakeholders 18 KEYS TO BUILDING BUY-IN

can help shape and take ownership of the organization s analytics capability. The Analytics Capability Adoption Curve shows the five basic stages of change adoption, from initial awareness to ownership. Organizations can move stakeholders along this path by establishing a network of change agents at different levels and domain areas. For example, change agents might include mid-level managers from each business unit or division, or representatives from analytics teams. They are essentially embedded advocates that facilitate communication among stakeholders. Booz Allen helps develop this network of change agents and gives them tools to target their communications and feedback collection. By fostering collaboration among the stakeholders, the change agents along with leadership help break down the data silos and encourage information sharing so that the results of the analytics will be more complete and accurate. The stakeholders work out their differences, offer suggestions, and understand how they will all benefit. This same process can help all those involved in the analytics capability from the owners of the data to the end users of the analytics develop a set of shared goals. And it can help make the data more transparent so that users are more likely to trust the results. GAINING BUY-IN THROUGH PROTOTYPES As organizations develop greater analytics capabilities to drive decision making, prototypes are essential in solidifying the support that is built with the vision and participation. Prototypes should focus on areas where quick buy-in is needed most. For example, if there is strong resistance to sharing information, the prototype should be strategically designed to show how the various stakeholders will benefit. It is often helpful to start with smaller projects or less complex analytics where quick wins are more assured. As illustrated in the chart below, prototypes that are most likely to generate buy-in have four qualities: TO BUILD BUY-IN, AN ANALYTICS PROTOTYPE SHOULD: FEATURE A HARD PROBLEM TO SOLVE YIELD A HIGH RETURN If the problem is too easy to solve, people may not have confidence in the strength of the analytics capability. But make sure the problem is not insurmountable. Demonstration of business value is the holy grail the analytics outputs must be actionable, as people want to see results before they buy in. PROVIDE AN ITERATIVE SOLUTION REACH ACROSS TARGETED GROUPS Quick success, even if preliminary, is important the solution does not have to be perfect to gain buy-in and inspire action. Be wary if the problem you are trying to solve requires extensive data collection or highly complex analytics to even begin to show results. If the analytics capability is intended to serve multiple business units/divisions, the problem you are trying to solve should resonate with all of them. Positive results for only a small portion of stakeholders will limit organizational buy-in. Analytics and Change 19

OUR APPROACH There are unique challenges to standing up a sophisticated analytics capability, and a onesize-fits-all change management approach will not be effective. Booz Allen can partner with your organization to implement a change solution tailored to your specific needs and goals. Here is the framework for our approach in the table below. When standing up an analytics capability, organizational buy-in is just as important as the right data and analytics. Booz Allen can help you create the vision, participation, and prototypes needed for success. VISION, PARTICIPATION, AND PROTOTYPE: A CASE STUDY Vision: Booz Allen s work with the Department of Homeland Security s Immigration and Customs Enforcement (ICE) Enforcement and Removal Operations (ERO) began with development of analytics to support a new identification system. As value was realized within the organization, the engagement evolved to bring analytics to the forefront of the organization s operations, which established our clients as leaders in data-driven decision making for all of ERO. The vision: to enable ICE to align resources with demand, understand CHANGE MANAGEMENT APPROACH FOR ESTABLISHMENT OF AN ANALYTICS CAPABILITY PREPARING FOR CHANGE MANAGING CHANGE REINFORCING CHANGE + Understand the organization s analytics maturity and stakeholder needs/concerns + Define and communicate the analytics vision + Develop a change and communication strategy + Create a multi-disciplinary team (i.e., computer scientists, mathematicians, and domain experts) and cross-organization change agent network + Identify and select prototype(s) with the vision/end state in mind + Develop, test, and evaluate analytical hypotheses and integrate prototype lessons learned + Put algorithms into production; evaluate and refine + Determine tailored data visualization methods + Assess change impacts, update change and communication strategy, and provide training + Establish incentive structure and reward system, and implement operating model and process changes + Expand the team/change agent network + Establish mechanisms for measuring and communicating success + Continue operationalizing the analytics + Continue implementation of operating model and process changes + Establish mechanisms to enable supervised learning + Calibrate analytics success instrumentation and measurement + Establish pipeline of analytics priorities 20 KEYS TO BUILDING BUY-IN

strategic and tactical gaps and potential mitigation strategies, and improve mission performance. Participation: Booz Allen collaboratively established an Analytical Hierarchy Process (AHP), a system of voting to reveal the organization s preferences, to help executive leaders engage in analytics tool development and set overall direction for the models. We also worked with ERO to establish a Modeling Control Board (MCB) to serve as the internal governing body for the analytics tools developed in ERO. The board consisted of stakeholders from various units within ERO, which met regularly to discuss model assumptions, data issues (quality, availability, etc.), model updates and changes, and resource priorities. The board reviewed and validated all significant components of model development and usage and helped ERO determine how to effectively invest in and grow the analytics capability. Prototype: Booz Allen assisted ICE ERO in using quick-turn tools to develop proofs, not masterpieces, in response to pressing concerns by leadership. The iterative approach provided a series of quick wins with senior stakeholders and enabled the organization to institutionalize analytics. At the heart of this effort was a commitment to data-driven decision making. Booz Allen s innovative spirit and strong partnership with our clients advanced ERO from a strictly reporting organization to an analytically driven organization that proactively manages its strategy, operations, budget, and performance with data. Recently, the Booz Allen team and client jointly received the award for Innovation in Analytics from the preeminent analytics organization in the US, the Institute for Operations Research and Management Science (INFORMS). Booz Allen embedded analytics at the core of ERO decision making and provided some of the best and brightest individuals to work on this ground-breaking project. The team worked closely with us to not only develop innovative tools, but also help us use these tools in our strategic and tactical decision making. As a result of Booz Allen s support, ICE understands how its data can help drive decisions and results. David Venturella, Former Director of ERO and Director of Secure Communities Analytics and Change 21

ALIGNING DATA SCIENCE Making Organizational Structure Work As commercial and government entities develop data science capabilities, an inevitable issue they face is how their data science teams should align within the organization. Should the teams be centralized under a single data science leader? Should they be dispersed throughout the organization, permanently embedded in individual business units or divisions? Should there be some combination of those two models, or perhaps yet another alternative? Organizations often adopt an approach without fully considering the implications. But that can be risky unless the data science capability is closely aligned with the organization s size, diversity, culture, and other factors, it may have a limited ability to drive mission and business success. While there are many possible organizational structures, we have found that three models typically work best for guiding where the data science capability should reside and how it will support the business. Each of the three the Centralized Model, the Diffused Model, and the Deployed Model has distinct advantages. Yet each also has potential pitfalls that organizations must guard against. What they all have in common is the need for data science leaders and teams to be proactive in ensuring that the selected model works as intended. They must take the lead in fostering the necessary collaboration and communication both within the data science teams and across the rest of the organization. Here is a guide to the three primary data science alignment models and how to choose which one is right for your organization. THE CENTRALIZED MODEL Centralized data science teams serve the entire organization but report to a chief data scientist, who decides which projects the teams will work on, and how to manage the projects. Business units work with the data science teams to solve specific challenges. This model often works best for organizations that are operating with limited resources and have too few data science experts to embed any in business units for long-term assignments. With the centralized model, the chief data scientist can target projects typically long-term that offer the greatest benefit to the larger organization s immediate needs. In addition, because the data science teams are in close contact with one another (often co-located), they are likely to pool their knowledge so that lessons learned by one team can help others. One primary challenge in the centralized model is that it can sometimes be difficult to establish trust and collaboration between the business units and the data science teams. Business unit members may view data science teams as outsiders who do not fully understand or feel invested in the

business problems, and they may see their relationship with the data science team as us versus them. To avoid this pitfall, data science leaders and teams need to take the initiative to create a collaborative environment. They must develop a partnership mindset and demonstrate their commitment to helping the business units achieve their goals. The chart below shows the advantages and challenges of the centralized model, and lists specific steps for making the model work. CHIEF DATA SCIENTIST DATA SCIENCE TEAMS BUSINESS UNIT LEADS THE DIFFUSED MODEL Diffused, or decentralized, data science teams are fully embedded in business units such as marketing, research and development, operations, and logistics. The teams report to individual business unit leaders and perform work under their leadership. This model often works best in organizations that have large data science capabilities and the Business units bring their problems to a centralized data science team, overseen by a chief data scientist. resources to embed teams in individual business units for long periods on open-ended projects. A benefit of this approach is that it allows data science teams to gain a deepened understanding of how analytics can benefit a particular domain or business THE CENTRALIZED MODEL ADVANTAGES CHALLENGES PLACES EXTRA FOCUS ON + Greater efficiency with limited resources, including flexibility to modify team composition during the life of a project as needs change + Access to data science is organization-wide, rather than limited to individual business units + Central management streamlines business processes, professional development, and enabling tools, contributing to economies of scale + Organizational separation between the business units and data science teams promotes the perception that analytics are objective + Project diversity motivates data science teams and contributes to strong retention + It can be difficult to enlist business units that have not yet bought in to data science + Business units often feel that they compete for data science resources and projects + Teams re-form for every new problem, requiring time to establish relationships, trust, and collaboration + Business units must provide another organization (i.e., the data science unit) with access to their data, which they are often reluctant to do + As a separate unit with rotating staff, data science teams may not develop the intimate domain knowledge that can provide efficiency to future business unit projects + Selling Analytics. Demonstrate tangible impacts of analytics to business unit leaders they are critical partners and need to buy in + Portfolio Management. Create transparency into how the organization will identify and select data science projects, including criteria to prioritize opportunities and align resources + Teamwork. Establish early partnerships between data science teams and business units, which will be integral to framing problems and translating analytics into business insights + Education. Train business unit leaders on the fundamentals of data science and the characteristics of a good data science problem, so people across the organization can recognize opportunities Aligning Data Science 23